Optimizing Membership Function Tuning for Fuzzy Control of Robotic Manipulators Using PID-Driven Data Techniques

Phichitphon Chotikunnan, Rawiphon Chotikunnan, Anuchit Nirapai, Anantasak Wongkamhang, Pariwat Imura, M. Sangworasil
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引用次数: 4

Abstract

In this study, a method for optimizing membership function tuning for fuzzy control of robotic manipulators using PID-driven data techniques is presented. Traditional approaches for designing membership functions in fuzzy control systems often rely on the experience and knowledge of the system designer, which can lead to suboptimal performance. By utilizing data collected from a PID control system, the proposed method aims to enhance the precision and controllability of robotic manipulators through improved fuzzy logic control. A Mamdani-type fuzzy logic controller was developed and its performance was simulated in Simulink, demonstrating the effectiveness of the proposed optimization technique. The results indicate that the method can outperform conventional P control systems in terms of overshoot reduction while maintaining comparable transient response specifications. This research highlights the potential of the PID-driven data-based approach for optimizing membership function tuning in fuzzy control systems and offers valuable insights for the development and evaluation of fuzzy logic control in robotic manipulators. Future work may focus on further optimization of the tuning process, evaluation of system robustness under various operating conditions, and exploring the integration of other artificial intelligence techniques for improved control performance.
基于pid驱动数据技术的机器人模糊控制优化隶属函数整定
提出了一种基于pid驱动数据技术的机器人模糊控制的隶属度函数优化整定方法。在模糊控制系统中设计隶属函数的传统方法通常依赖于系统设计者的经验和知识,这可能导致次优性能。该方法利用PID控制系统采集的数据,通过改进模糊逻辑控制来提高机械臂的精度和可控性。开发了一种mamdani型模糊控制器,并在Simulink中对其性能进行了仿真,验证了所提优化技术的有效性。结果表明,该方法在保持可比较的瞬态响应规格的同时,在超调减少方面优于传统的P控制系统。本研究强调了pid驱动的基于数据的方法在模糊控制系统中优化隶属函数整定的潜力,并为机器人操纵器模糊逻辑控制的发展和评估提供了有价值的见解。未来的工作可能集中在进一步优化调谐过程,评估系统在各种运行条件下的鲁棒性,以及探索与其他人工智能技术的集成以提高控制性能。
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CiteScore
6.30
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